Literature DB >> 32362707

Generative modeling for renal microanatomy.

Leema Krishna Murali1, Brendon Lutnick2, Brandon Ginley2, John E Tomaszewski2, Pinaki Sarder2.   

Abstract

Generative adversarial networks (GANs) have received immense attention in the field of machine learning for their potential to learn high-dimensional and real data distribution. These methods do not rely on any assumptions about the data distribution of the input sample and can generate real-like samples from latent vector space based on unsupervised learning. In the medical field, particularly, in digital pathology expert annotation and availability of a large set of training data is costly and the study of manifestations of various diseases is based on visual examination of stained slides. In clinical practice, various staining information is required to improve the pathological diagnosis process. But when the sampled tissue to be examined is limited, the final diagnosis made by the pathologist is based on limited stain styles. These limitations can be overcome by studying the usability and reliability of generative models in the field of digital pathology. To understand the usability of the generative models, we synthesize in an unsupervised manner, high resolution renal microanatomical structures like renal glomerulus in thin tissue histology images using state-of-art architectures like Deep Convolutional Generative Adversarial Network (DCGAN) and Enhanced Super-Resolution Generative Adversarial Network (ESRGAN). Successful generation of such structures will lead to obtaining a large set of labeled data for further developing supervised algorithms for disease classification and understanding progression. Our study suggests while GAN is able to attain formalin fixed and paraffin embedded tissue image quality, GAN requires further prior knowledge as input to model intrinsic micro-anatomical details, such as capillary wall, urinary pole, nuclei placement, suggesting developing semi-supervised architectures by using these above details as prior information. Also, the generative models can be used to create an artificial effect of staining without physically tampering the histopathological slide. To demonstrate this, we use a CycleGAN network to transform Hematoxylin and eosin (H&E) stain to Periodic acid-Schiff (PAS) stain and Jones methenamine silver (JMS) stain to PAS stain. In this way GAN can be employed to translate different renal pathology stain styles when the relevant staining information is not available in the clinical settings.

Entities:  

Keywords:  Digital pathology; Generative Adversarial Network; Glomeruli; Hematoxylin and eosin; Jones methenamine silver; Machine Learning; Periodic acid-Schiff; Unsupervised learning

Year:  2020        PMID: 32362707      PMCID: PMC7194215          DOI: 10.1117/12.2549891

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  4 in total

1.  An integrated iterative annotation technique for easing neural network training in medical image analysis.

Authors:  Brendon Lutnick; Brandon Ginley; Darshana Govind; Sean D McGarry; Peter S LaViolette; Rabi Yacoub; Sanjay Jain; John E Tomaszewski; Kuang-Yu Jen; Pinaki Sarder
Journal:  Nat Mach Intell       Date:  2019-02-11

2.  Medical Image Synthesis with Context-Aware Generative Adversarial Networks.

Authors:  Dong Nie; Roger Trullo; Jun Lian; Caroline Petitjean; Su Ruan; Qian Wang; Dinggang Shen
Journal:  Med Image Comput Comput Assist Interv       Date:  2017-09-04

3.  Computational Segmentation and Classification of Diabetic Glomerulosclerosis.

Authors:  Brandon Ginley; Brendon Lutnick; Kuang-Yu Jen; Agnes B Fogo; Sanjay Jain; Avi Rosenberg; Vighnesh Walavalkar; Gregory Wilding; John E Tomaszewski; Rabi Yacoub; Giovanni Maria Rossi; Pinaki Sarder
Journal:  J Am Soc Nephrol       Date:  2019-09-05       Impact factor: 14.978

Review 4.  Machine Learning Methods for Histopathological Image Analysis.

Authors:  Daisuke Komura; Shumpei Ishikawa
Journal:  Comput Struct Biotechnol J       Date:  2018-02-09       Impact factor: 7.271

  4 in total
  4 in total

Review 1.  AI applications in renal pathology.

Authors:  Yuankai Huo; Ruining Deng; Quan Liu; Agnes B Fogo; Haichun Yang
Journal:  Kidney Int       Date:  2021-02-10       Impact factor: 10.612

2.  Deep learning segmentation of glomeruli on kidney donor frozen sections.

Authors:  Xiang Li; Richard C Davis; Yuemei Xu; Zehan Wang; Nao Souma; Gina Sotolongo; Jonathan Bell; Matthew Ellis; David Howell; Xiling Shen; Kyle J Lafata; Laura Barisoni
Journal:  J Med Imaging (Bellingham)       Date:  2021-12-20

3.  Histo-Fetch - On-the-Fly Processing of Gigapixel Whole Slide Images Simplifies and Speeds Neural Network Training.

Authors:  Brendon Lutnick; Leema Krishna Murali; Brandon Ginley; Avi Z Rosenberg; Pinaki Sarder
Journal:  J Pathol Inform       Date:  2022-01-06

4.  Glomerular disease classification and lesion identification by machine learning.

Authors:  Cheng-Kun Yang; Ching-Yi Lee; Hsiang-Sheng Wang; Shun-Chen Huang; Peir-In Liang; Jung-Sheng Chen; Chang-Fu Kuo; Kun-Hua Tu; Chao-Yuan Yeh; Tai-Di Chen
Journal:  Biomed J       Date:  2021-09-08       Impact factor: 7.892

  4 in total

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